COVID-19动态建模

Bin Zhao
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Based on the theoretical basis of traditional differential equations and SIR infectious disease model [1] and combined with the actual situation to improve the model. Hubei Province is modeled in different time periods, and the effects of birth rate and natural mortality on the model are analyzed. Since the birth rate and natural mortality in the United States in recent years cannot be found, the epidemic situation in the United States can only be analyzed based on the absence of births and natural deaths. We will introduce some of the transmission dynamics models of COVID-19 under intervention. Finally, we used Netlogo [2] to establish a closed environment (Small World), and combined with known data to conduct simulation experiments on COVID-19 infection. Findings: Through the analysis of given data through the SIR model, it is found that before the Chinese government has taken comprehensive measures to cure patients (before 10 February), the number of patients in Hubei Province will reach the peak at the end of February, and will gradually decline thereafter, and on 20 March, the epidemic will be effectively controlled in the future, which coincides with the fact that Wuhan closed the last mobile cabin hospital on 10 March. On the other hand, after the Chinese government tried its best to cure the patients (after 21 February), the number of patients continued to decline over time and will reach 0 in mid-April, which is also consistent with the actual data. 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引用次数: 0

摘要

背景:2019年12月以来,新型冠状病毒(COVID-19)在湖北武汉突然出现,并迅速席卷中国,继而席卷全球。今天,经过100多天的抗疫斗争,中国的疫情得到了有效控制,但放眼全球,新冠肺炎疫情在全球范围内肆虐,特别是在美国和欧洲许多国家。本文主要研究COVID-19疫情对湖北省和美国的影响,拟合给定数据并预测未来趋势。方法:动态建模是揭示COVID-19传播规律的有效方法之一,它基于内部传播机制,可以根据当前信息动态预测未来趋势。在传统微分方程和SIR传染病模型[1]的理论基础上,结合实际情况对模型进行改进。建立了湖北省不同时期的人口模型,分析了人口出生率和自然死亡率对模型的影响。由于无法查到美国近年来的出生率和自然死亡率,所以只能在没有出生和自然死亡的情况下分析美国的疫情。我们将介绍干预下新冠肺炎的一些传播动力学模型。最后,我们利用Netlogo[2]建立封闭环境(Small World),结合已知数据进行COVID-19感染模拟实验。结果:通过SIR模型对给定数据进行分析,发现在中国政府采取综合措施治愈患者之前(2月10日之前),湖北省的患者数量将在2月底达到峰值,之后逐渐下降,3月20日是疫情未来得到有效控制的时间,这与武汉3月10日关闭最后一家流动客舱医院的时间相吻合。另一方面,在中国政府全力救治患者后(2月21日之后),随着时间的推移,患者数量持续下降,将在4月中旬达到0,这也与实际数据一致。根据出生和自然死亡因素,对上述模型进行敏感性分析发现,当疫情处于高峰时,对曲线影响不大,但当疫情逐渐平缓时,对曲线走势仍有一定影响。最后,从美国的情况来看,由于传播率高,美国的患者人数继续上升,预计将在6月中旬达到最大值。我们还使用Netlogo对病毒传播的环境进行了模拟,发现曲线的总趋势也与实际曲线一致。解释:
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Dynamic Modeling of COVID-19
Background: The novel coronavirus (COVID-19) suddenly appeared in Wuhan, Hubei since December 2019, and quickly swept across China, then the whole world. Today, after more than 100 days of fighting against the virus, China’s epidemic has been effectively controlled, but when we looking at the entire world, the novel coronavirus has rampaged globally, especially in the United States and many European countries. This paper mainly studies the impact of COVID-19 outbreaks at Hubei Province and the United States, fits the given data and predicts future trends. Methods: Dynamical modelling is one of the useful methods to reveal the transmission rule of COVID-19 spread which is based on the internal transmission mechanism and can dynamically predict the future trend according to the current information. Based on the theoretical basis of traditional differential equations and SIR infectious disease model [1] and combined with the actual situation to improve the model. Hubei Province is modeled in different time periods, and the effects of birth rate and natural mortality on the model are analyzed. Since the birth rate and natural mortality in the United States in recent years cannot be found, the epidemic situation in the United States can only be analyzed based on the absence of births and natural deaths. We will introduce some of the transmission dynamics models of COVID-19 under intervention. Finally, we used Netlogo [2] to establish a closed environment (Small World), and combined with known data to conduct simulation experiments on COVID-19 infection. Findings: Through the analysis of given data through the SIR model, it is found that before the Chinese government has taken comprehensive measures to cure patients (before 10 February), the number of patients in Hubei Province will reach the peak at the end of February, and will gradually decline thereafter, and on 20 March, the epidemic will be effectively controlled in the future, which coincides with the fact that Wuhan closed the last mobile cabin hospital on 10 March. On the other hand, after the Chinese government tried its best to cure the patients (after 21 February), the number of patients continued to decline over time and will reach 0 in mid-April, which is also consistent with the actual data. According to the factors of birth and natural death, the sensitivity analysis of the above model found that when the epidemic situation is at its peak, it has little effect on the curve, but when the epidemic situation gradually flattens, it still has a certain effect on the trend of the curve. Finally, looking at the situation in the United States, due to the high transmission rate, the number of patients in the United States continues to rise and is expected to reach its maximum in mid-June. We also use Netlogo to simulate the environment in which the virus spread, and find that the general trend of the curves is also consistent with the actual curves. Interpretation:
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